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Investigation of the Properties of the HEAF Estimator Using Simulation Experiments and MPEG-encoded Video Traces

机译:利用仿真实验和MPEG编码视频迹线对堆估计器的特性进行研究

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More than a decade ago it was discovered that some LAN traffic exhibits self-similar rather than Poisson behaviour and there is ongoing research towards finding and improving suitable estimators which may help to characterize various types of network traffic. Such characterization can be potentially applied for control purposes such as traffic shaping, load balancing, etc. The Hurst exponent is used to measure the intensity of long-range dependence (LRD) in the network traffic. Despite having several existing estimators, LRD analysis is still impeded by the difficulty of actual identification of its intensity. This paper continues work on estimating the Hurst exponent from the autocorrelation function, a so-called HEAF estimator introduced earlier by the authors. It also compares HEAF with a few existing estimators such as Wavelet, Higuchi, aggregated variance time (V/T) and Rescaled-range (R/S). The simulation studies show that HEAF can be used to capture the LRD in the network traffic if true process is fGn and FARIMA.
机译:十多年前,发现一些局域网交通展现出自我相似而不是泊松行为,并且正在努力寻找和改进合适的估算,这有助于描述各种类型的网络流量。这种表征可以潜在地应用于控制目的,例如交通整形,负载平衡等。赫斯特指数用于测量网络流量中的远程依赖性(LRD)的强度。尽管有几个现有的估计因素,但仍然受到实际识别其强度的难度来阻碍LRD分析。本文继续估算从自相关函数的赫斯特指数,由作者早些时候推出的所谓的HEAF估计。它还将HEAF与诸如小波,HIGUCHI,聚合方差时间(V / T)和重新定义(R / S)的少数现有估计器进行比较。仿真研究表明,如果True Process是FGN和Farima,则可以使用HEAF在网络流量中捕获LRD。

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